We aim at efficiently classifying ALS data in urban areas by choosing an optimal combination of features and entities. Three kinds of entities are defined, namely, single points, planar segments and segments obtained by mean-shift segmentation. Various features are computed for these three entities. All derived features are assigned to different steps of our method. Our method is composed of a sequence of rule based classifications. After a rule based classification for planar segments and a context rule based classification for walls and roof elements 85 % of the data are well classified. Errors mainly appear in the area where rules are difficult to define, such as vegetation close to walls and above roofs. To eliminate these errors, we fi...
The proposed research is related with building detection in airborne laser scanning data. The result...
After a short introduction into the Airborne Laser Scanning (ALS), the sampling process and a brief ...
This paper presents our work on automated classification of Mobile Laser Scanning (MLS) point clouds...
This paper presents an automated and effective framework for classifying airborne laser scanning (AL...
Various methods have been developed to measure the physical presence of objects in a landscape with ...
In this paper, we address the classification of airborne laser scanning data. We present a novel met...
Classification of airborne laser scanning data using information about intensity and width of the re...
A method for the classification of trees and powerlines in urban areas by using only dual return (fi...
Point clouds are a very detailed and accurate vector data model of 3D geographic information. In con...
Full-waveform (FWF) LiDAR (Light Detection and Ranging) systems have their advantage in recording th...
There are normally three main steps to carrying out the labeling of airborne laser scanning (ALS) po...
Kumulative Dissertation aus fünf ArtikelALS (Airborne Laser Scanning)/Airborne LiDAR (Light Detectio...
This dissertation addresses the problem of automated vector extraction from Airborne Laser Scanner (...
Airborne laser scanning (ALS) data are increasingly being used for land cover classification. The am...
This article presents a newly developed procedure for the classification of airborne laser scanning ...
The proposed research is related with building detection in airborne laser scanning data. The result...
After a short introduction into the Airborne Laser Scanning (ALS), the sampling process and a brief ...
This paper presents our work on automated classification of Mobile Laser Scanning (MLS) point clouds...
This paper presents an automated and effective framework for classifying airborne laser scanning (AL...
Various methods have been developed to measure the physical presence of objects in a landscape with ...
In this paper, we address the classification of airborne laser scanning data. We present a novel met...
Classification of airborne laser scanning data using information about intensity and width of the re...
A method for the classification of trees and powerlines in urban areas by using only dual return (fi...
Point clouds are a very detailed and accurate vector data model of 3D geographic information. In con...
Full-waveform (FWF) LiDAR (Light Detection and Ranging) systems have their advantage in recording th...
There are normally three main steps to carrying out the labeling of airborne laser scanning (ALS) po...
Kumulative Dissertation aus fünf ArtikelALS (Airborne Laser Scanning)/Airborne LiDAR (Light Detectio...
This dissertation addresses the problem of automated vector extraction from Airborne Laser Scanner (...
Airborne laser scanning (ALS) data are increasingly being used for land cover classification. The am...
This article presents a newly developed procedure for the classification of airborne laser scanning ...
The proposed research is related with building detection in airborne laser scanning data. The result...
After a short introduction into the Airborne Laser Scanning (ALS), the sampling process and a brief ...
This paper presents our work on automated classification of Mobile Laser Scanning (MLS) point clouds...